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Mastering Pandas for Finance

You're reading from   Mastering Pandas for Finance Master pandas, an open source Python Data Analysis Library, for financial data analysis

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Product type Paperback
Published in May 2015
Publisher Packt
ISBN-13 9781783985104
Length 298 pages
Edition 1st Edition
Languages
Tools
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Author (1):
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Michael Heydt Michael Heydt
Author Profile Icon Michael Heydt
Michael Heydt
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Table of Contents (11) Chapters Close

Preface 1. Getting Started with pandas Using Wakari.io FREE CHAPTER 2. Introducing the Series and DataFrame 3. Reshaping, Reorganizing, and Aggregating 4. Time-series 5. Time-series Stock Data 6. Trading Using Google Trends 7. Algorithmic Trading 8. Working with Options 9. Portfolios and Risk Index

Visualizing the efficient frontier


Our optimization code generated the portfolio that is optimal for the specific risk-free rate of return. This is one type of? portfolio. To be able to plot all of the portfolios along the Markowitz bullet, we can change the optimization around a little bit.

The following function takes a weights vector, the returns, and a target return and calculates the variance of that portfolio with an extra penalty the further the mean is from the target return, so as to help push portfolios with weights further from the mean considering they are on the frontier:

In [27]:
   def objfun(W, R, target_ret):
       stock_mean = np.mean(R,axis=0)
       port_mean = np.dot(W,stock_mean) 
       cov=np.cov(R.T) 
       port_var = np.dot(np.dot(W,cov),W.T) 
       penalty = 2000*abs(port_mean-target_ret)
       return np.sqrt(port_var) + penalty 

We now create a function that will run through a set of desired return values, ranging from the lowest returning stock to the highest...

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